Abstract

The advertising market’s use of smartphones and kiosks for non-face-to-face ordering is growing. An advertising video recommender system is needed that continuously shows advertising videos that match a user’s taste and displays other advertising videos quickly for unwanted advertisements. However, it is difficult to make a recommender system to identify users’ dynamic preferences in real time. In this study, we propose an advertising video recommendation procedure based on computer vision and deep learning, which uses changes in users’ facial expressions captured at every moment. Facial expressions represent a user’s emotions toward advertisements. We can utilize facial expressions to find a user’s dynamic preferences. For such a purpose, a CNN-based prediction model was developed to predict ratings, and a SIFT algorithm-based similarity model was developed to search for users with similar preferences in real time. To evaluate the proposed recommendation procedure, we experimented with food advertising videos. The experimental results show that the proposed procedure is superior to benchmark systems such as a random recommendation, an average rating approach, and a typical collaborative filtering approach in recommending advertising videos to both existing users and new users. From these results, we conclude that facial expressions are a critical factor for advertising video recommendations and are helpful in properly addressing the new user problem in existing recommender systems.

Highlights

  • We propose an advertising video recommendation procedure based on facial expression changes to cope with users’ dynamic preferences within a short period

  • We found that facial expressions are an important factor for advertising video recommendations

  • This study aims to develop a user-customized advertising video recommender system to search for similar users in real time and to recommend advertisements suitable for users’

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Summary

Introduction

Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations. As the number of Internet users increases, users’ interactions with multimedia devices are growing rapidly. In fast food restaurants and cafes, non-face-to-face services that take orders through a smartphone app or a kiosk are increasing rather than receiving orders through people. Because of COVID-19, non-face-to-face orders are increasing at an explosive rate. Advertisers have not missed this opportunity and want to place various advertisements while processing orders through kiosks or smart apps

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